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Combining SMOS with visible and near/shortwave/thermal infrared satellite data for high resolution soil moisture estimates

机译:将SMOS与可见光和近/短波/热红外卫星数据相结合,以进行高分辨率的土壤湿度估算

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Sensors in the range of visible and near-shortwave-thermal infrared regions can be used in combination with passive microwave observations to provide soil moisture maps at much higher spatial resolution than the original resolution of current radiometers. To do so, a new downscaling algorithm ultimately based on the land surface temperature (LST) - Normalized Difference Vegetation Index (NDVI) - Brightness Temperature (T_B) relationship is used, in which shortwave infrared indices are used as vegetation descriptors, instead of the more common near infrared ones. The theoretical basis of those indices, calculated as the normalized ratio of the 1240, 1640 and 2130 nm shortwave infrared (SWIR) bands and the 858 nm near infrared (NIR) band indicate that they are able to provide estimates of the vegetation water content. These so-called water indices extracted from MODIS products, have been used together with MODIS LST, and SMOS TB to improve the spatial resolution of ~40 km SMOS soil moisture estimates. The aim was to retrieve soil moisture maps with the same accuracy as SMOS, but at the same resolution of the MODIS dataset, i.e., 500 m, which were then compared against in situ measurements from the REMEDHUS network in Spain. Results using two years of SMOS and MODIS data showed a similar performance for the four indices, with slightly better results when using the index derived from the first SWIR band. For the areal-average, a coefficient of correlation (R) of ~0.61 and ~0.72 for the morning and afternoon orbits, respectively, and a centered root mean square difference (cRMSD) of ~0.04 m~3 m~(-3) for both orbits was obtained. A twofold improvement of the current versions of this downscaling approach has been achieved by using more frequent and higher spatial resolution water indexes as vegetation descriptors: (1) the spatial resolution of the resulting soil moisture maps can be enhanced from ~40 km up to 500 m, and (2) more accurate soil moisture maps (in terms of R and cRMSD) can be obtained, especially in periods of high vegetation activity. The results of this study support the use of high resolution LST and SWIR-based vegetation indices to disaggregate SMOS observations down to 500 m soil moisture maps, meeting the needs of fine-scale hydrological applications.
机译:可见光和近短波热红外范围内的传感器可以与无源微波观测结合使用,以比当前辐射计原始分辨率高得多的空间分辨率提供土壤湿度图。为此,使用了一种新的降尺度算法,该算法最终基于地表温度(LST)-归一化植被指数(NDVI)-亮度温度(T_B)关系,其中短波红外指数用作植被描述符,而不是更常见的是近红外的。这些指数的理论基础以1240、1640和2130 nm短波红外(SWIR)波段和858 nm近红外(NIR)波段的归一化比率计算得出,表明它们能够提供植被含水量的估计值。从MODIS产品中提取的这些所谓的水指数已与MODIS LST和SMOS TB一起使用,以提高约40 km SMOS土壤湿度估算值的空间分辨率。目的是以与SMOS相同的精度,但以MODIS数据集的相同分辨率(即500 m)来检索土壤湿度图,然后将其与西班牙REMEDHUS网络的现场测​​量结果进行比较。使用两年的SMOS和MODIS数据得出的结果显示,这四个指数具有相似的性能,当使用从第一个SWIR波段得出的指数时,结果略好。对于面积平均值,上午和下午轨道的相关系数(R)分别为〜0.61和〜0.72,中心均方根差(cRMSD)为〜0.04 m〜3 m〜(-3)获得了两个轨道。通过使用更频繁和更高的空间分辨率水指数作为植被描述符,目前对这种降尺度方法的版本有了两倍的改进:(1)最终土壤湿度图的空间分辨率可以从约40 km提高到500 m,以及(2)可以获得更准确的土壤湿度图(以R和cRMSD表示),尤其是在植被活跃的时期。这项研究的结果支持使用高分辨率的LST和基于SWIR的植被指数来分解SMOS观测,直至500 m的土壤湿度图,满足精细水文应用的需求。

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